| Literature DB >> 33417707 |
Jun Park1, Giorgos Bakoyannis2, Ying Zhang3, Constantin T Yiannoutsos2.
Abstract
Competing risk data are frequently interval-censored, that is, the exact event time is not observed but only known to lie between two examination time points such as clinic visits. In addition to interval censoring, another common complication is that the event type is missing for some study participants. In this article, we propose an augmented inverse probability weighted sieve maximum likelihood estimator for the analysis of interval-censored competing risk data in the presence of missing event types. The estimator imposes weaker than usual missing at random assumptions by allowing for the inclusion of auxiliary variables that are potentially associated with the probability of missingness. The proposed estimator is shown to be doubly robust, in the sense that it is consistent even if either the model for the probability of missingness or the model for the probability of the event type is misspecified. Extensive Monte Carlo simulation studies show good performance of the proposed method even under a large amount of missing event types. The method is illustrated using data from an HIV cohort study in sub-Saharan Africa, where a significant portion of events types is missing. The proposed method can be readily implemented using the new function ciregic_aipw in the R package intccr.Entities:
Keywords: Augmented inverse probability weighting; Interval censoring; Missing data; R package
Mesh:
Year: 2022 PMID: 33417707 PMCID: PMC9291598 DOI: 10.1093/biostatistics/kxaa052
Source DB: PubMed Journal: Biostatistics ISSN: 1465-4644 Impact factor: 5.279